Memes have gained popularity as a means to share visual ideas through the Internet and social media by mixing text, images and videos, often for humorous purposes. Research enabling automated analysis of memes has gained attention in recent years, including among others the task of classifying the emotion expressed in memes. In this paper, we propose a novel model, cluster-based deep ensemble learning (CDEL), for emotion classification in memes. CDEL is a hybrid model that leverages the benefits of a deep learning model in combination with a clustering algorithm, which enhances the model with additional information after clustering memes with similar facial features. We evaluate the performance of CDEL on a benchmark dataset for emotion classification, proving its effectiveness by outperforming a wide range of baseline models and achieving state-of-the-art performance. Further evaluation through ablated models demonstrates the effectiveness of the different components of CDEL.
翻译:通过将文字、图像和视频混合在一起,往往出于幽默目的,通过因特网和社交媒体分享视觉思想的Memes越来越受欢迎。能够对Memes进行自动分析的研究近年来引起了人们的注意,其中包括对Memes表示的情感进行分类的任务。在本文中,我们提出了一个新颖的模型,即基于集群的深合体学习(CDEL),用于Memes的情感分类。CDEL是一种混合模型,它利用了深度学习模型的效益,与集群算法相结合,在将具有类似面部特征的Memes组合在一起之后,通过更多的信息加强模型。我们评估CDEL在情感分类基准数据集方面的表现,通过超越广泛的基线模型和取得最新业绩来证明其效力。通过宽放模型进一步评估CDEL不同组成部分的有效性。